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isotree (version 0.5.15)

isotree.export.model: Export Isolation Forest model

Description

Save Isolation Forest model to a serialized file along with its metadata, in order to be used in the Python or the C++ versions of this package.

This function is not suggested to be used for passing models to and from R - in such case, one can use `saveRDS` and `readRDS` instead, although the function still works correctly for serializing objects between R sessions.

Note that, if the model was fitted to a `data.frame`, the column names must be something exportable as JSON, and must be something that Python's Pandas could use as column names (e.g. strings/character).

Can optionally generate a JSON file with metadata such as the column names and the levels of categorical variables, which can be inspected visually in order to detect potential issues (e.g. character encoding) or to make sure that the columns are of the right types.

Requires the `jsonlite` package in order to work.

Usage

isotree.export.model(model, file, add_metadata_file = FALSE)

Value

The same `model` object that was passed as input, as invisible.

Arguments

model

An Isolation Forest model as returned by function isolation.forest.

file

File path where to save the model. File connections are not accepted, only file paths

add_metadata_file

Whether to generate a JSON file with metadata, which will have the same name as the model but will end in '.metadata'. This file is not used by the de-serialization function, it's only meant to be inspected manually, since such contents will already be written in the produced model file.

Details

The metadata file, if produced, will contain, among other things, the encoding that was used for categorical columns - this is under `data_info.cat_levels`, as an array of arrays by column, with the first entry for each column corresponding to category 0, second to category 1, and so on (the C++ version takes them as integers). When passing `categ_cols`, there will be no encoding but it will save the maximum category integer and the column numbers instead of names.

The serialized file can be used in the C++ version by reading it as a binary file and de-serializing its contents using the C++ function 'deserialize_combined' (recommended to use 'inspect_serialized_object' beforehand).

Be aware that this function will write raw bytes from memory as-is without compression, so the file sizes can end up being much larger than when using `saveRDS`.

The metadata is not used in the C++ version, but is necessary for the R and Python versions.

Note that the model treats boolean/logical variables as categorical. Thus, if the model was fit to a `data.frame` with boolean columns, when importing this model into C++, they need to be encoded in the same order - e.g. the model might encode `TRUE` as zero and `FALSE` as one - you need to look at the metadata for this.

The files produced by this function will be compatible between:

  • Different operating systems.

  • Different compilers.

  • Different Python/R versions.

  • Systems with different 'size_t' width (e.g. 32-bit and 64-bit), as long as the file was produced on a system that was either 32-bit or 64-bit, and as long as each saved value fits within the range of the machine's 'size_t' type.

  • Systems with different 'int' width, as long as the file was produced on a system that was 16-bit, 32-bit, or 64-bit, and as long as each saved value fits within the range of the machine's int type.

  • Systems with different bit endianness (e.g. x86 and PPC64 in non-le mode).

  • Versions of this package from 0.3.0 onwards, but only forwards compatible (e.g. a model saved with versions 0.3.0 to 0.3.5 can be loaded under version 0.3.6, but not the other way around, and attempting to do so will cause crashes and memory curruptions without an informative error message). This last point applies also to models saved through save, saveRDS, qsave, and similar. Note that loading a model produced by an earlier version of the library might be slightly slower.

But will not be compatible between:

  • Systems with different floating point numeric representations (e.g. standard IEEE754 vs. a base-10 system).

  • Versions of this package earlier than 0.3.0.

This pretty much guarantees that a given file can be serialized and de-serialized in the same machine in which it was built, regardless of how the library was compiled.

Reading a serialized model that was produced in a platform with different characteristics (e.g. 32-bit vs. 64-bit) will be much slower.

On Windows, if compiling this library with a compiler other than MSVC or MINGW, (not currently supported by CRAN's build systems at the moment of writing) there might be issues exporting models larger than 2GB.

In non-windows systems, if the file name contains non-ascii characters, the file name must be in the system's native encoding. In windows, file names with non-ascii characters are supported as long as the package is compiled with GCC5 or newer.

Note that, while `readRDS` and `load` will not make any changes to the serialized format of the objects, reading a serialized model from a file will forcibly re-serialize, using the system's own setup (e.g. 32-bit vs. 64-bit, endianness, etc.), and as such can be used to convert formats.

See Also

isotree.import.model isotree.restore.handle